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**\
**\
** Replication Data for:\
** \
** Christopher J. Fariss\
** ``The Strategic Substitution of United States Foreign Aid'' \
** Foreign Policy Analysis \
** Volume 6 Number 2 (April 2010):106-130\
**\
** contact author: Christopher J. Fariss\
** contact e-mail: cjf0006@gmail.com; cfariss@ucsd.edu\
** replication data available at: http://dvn.iq.harvard.edu/dvn/dv/CJFariss\
** \
** All commands were run in Stata 9.2\
**\
** All models contained within this replication file correspond to the \
** models and tables presented in the text of the article.\
**\
**\
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**\
** NOTE THAT SOME OF THE COEFFICIENTS PRODUCED IN\
** STATA 11 ARE SLIGHTLY DIFFERENT IN FROM THOSE \
** PRODUCED IN STATA 9.2\
** \
**\
** NOTE THAT YOU MUST HAVE CLARIFY INSTALLED TO \
** GENERATE THE COMMANDS UNDER TABLE 2 BELOW\
**\
** To install clarify enter the following comands into Stata:\
**\
** net from http://gking.harvard.edu/clarify/ \
** net install clarify \
**\
** see http://gking.harvard.edu/stats.shtml for details\
**\
**\
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**\
**\
** create descriptive labels for each variable\
**\
label variable ccode "Correlates of War code"\
label variable country "Correlates of War country name" \
label variable year "Year" \
label variable ln_foodaid "natural log of US food aid"\
label variable ln_foodaid_lag "natural log of US food aid t-1"\
label variable ln_nonfoodaid "natural log of US economic aid"\
label variable ln_nonfoodaid_lag "natural log of US economic aid t-1"\
label variable ainew "human rights political terror scale based on amnesty international reports"\
label variable ainewl "human rights political terror scale based on amnesty international reports t-1"\
label variable ln_militaryaid "natural log of US military aid natural log"\
label variable ln_militaryaid_lag "natural log of US military aid natural log t-1"\
label variable sanctions "sanctions dummy variable"\
label variable sanctions_lag "sanctions dummy variable t-1"\
label variable cerealpc "grain production per capita"\
label variable cerealpc_lag "grain production per capita t-1"\
label variable ln_cerealpc_lag "natural log grain production per capita t-1"\
label variable drought "drought dummy variable t-1"\
label variable drought_lag "drought dummy variable t-1"\
label variable lgdppc "natural log of gdp per capita"\
label variable lgdppc_lag "natural log of gdp per capita t-1"\
label variable ln_cereal_export_2004 "natural log US cereal exports in 2004 dollars"\
label variable ln_cereal_export_lag_2004 "natural log US cereal exports in 2004 dollars t-1"\
label variable lpop "natural log population"\
label variable lpop_lag "natural log population t-1"\
label variable ainewl_x_ln_militaryaid "interaction"\
label variable fooddummy "dummy variable of food aid"\
label variable substitute "categorical aid variable for multinomial logit estimation"\
label variable counter "fooddummy counter produced with btscs comand"\
**\
**\
**\
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** TABLE 1\
**\
mlogit substitute ainewl ln_militaryaid sanctions_lag ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag, robust baseoutcome(3)\
**\
mlogit substitute ainewl ln_militaryaid ainewl_x_ln_militaryaid sanctions_lag ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag, robust baseoutcome(3)\
**\
**\
************************************************************************\
** TABLE 2\
**\
estsimp mlogit substitute ainewl ln_militaryaid ainewl_x_ln_militaryaid sanctions_lag ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag, robust baseoutcome(3)\
**\
setx mean\
setx  sanctions_lag median drought_lag median\
**\
setx  ainewl 1 ln_militaryaid 0 ainewl_x_ln_militaryaid 0\
simqi\
**\
setx  ainewl 2 ln_militaryaid 0 ainewl_x_ln_militaryaid 0\
simqi\
**\
setx  ainewl 3 ln_militaryaid 0 ainewl_x_ln_militaryaid 0\
simqi\
**\
setx  ainewl 4 ln_militaryaid 0 ainewl_x_ln_militaryaid 0\
simqi\
**\
setx  ainewl 5 ln_militaryaid 0 ainewl_x_ln_militaryaid 0\
simqi\
**\
setx mean\
setx  sanctions_lag median drought_lag median\
setx  ainewl 1 ln_militaryaid 8.57999 ainewl_x_ln_militaryaid 8.57999\
simqi\
**\
setx  ainewl 2 ln_militaryaid 8.57999 ainewl_x_ln_militaryaid 17.15998\
simqi\
**\
setx  ainewl 3 ln_militaryaid 8.57999 ainewl_x_ln_militaryaid 25.73997\
simqi\
**\
setx  ainewl 4 ln_militaryaid 8.57999 ainewl_x_ln_militaryaid 34.31996\
simqi\
**\
setx  ainewl 5 ln_militaryaid 8.57999 ainewl_x_ln_militaryaid 42.89995\
simqi\
**\
setx  ainewl 1 ln_militaryaid 15.528245 ainewl_x_ln_militaryaid 15.528245\
simqi\
**\
setx  ainewl 2 ln_militaryaid 15.528245 ainewl_x_ln_militaryaid 31.05649\
simqi\
**\
setx  ainewl 3 ln_militaryaid 15.528245 ainewl_x_ln_militaryaid 46.584735\
simqi\
**\
setx  ainewl 4 ln_militaryaid 15.528245 ainewl_x_ln_militaryaid 62.11298\
simqi\
**\
setx  ainewl 5 ln_militaryaid 15.528245 ainewl_x_ln_militaryaid 77.641225\
simqi\
**\
setx  ainewl 1 ln_militaryaid 21.86994 ainewl_x_ln_militaryaid 21.86994\
simqi\
**\
setx  ainewl 2 ln_militaryaid 21.86994 ainewl_x_ln_militaryaid 43.73988\
simqi\
**\
setx  ainewl 3 ln_militaryaid 21.86994 ainewl_x_ln_militaryaid 65.60982\
simqi\
**\
setx  ainewl 4 ln_militaryaid 21.86994 ainewl_x_ln_militaryaid 87.47976\
simqi\
**\
setx  ainewl 5 ln_militaryaid 21.86994 ainewl_x_ln_militaryaid 109.3497\
simqi\
**\
setx  ainewl 1 ln_militaryaid 1.631735 ainewl_x_ln_militaryaid 1.631735\
simqi\
**\
setx  ainewl 2 ln_militaryaid 1.631735 ainewl_x_ln_militaryaid 3.26347\
simqi\
**\
setx  ainewl 3 ln_militaryaid 1.631735 ainewl_x_ln_militaryaid 4.895205\
simqi\
**\
setx  ainewl 4 ln_militaryaid 1.631735 ainewl_x_ln_militaryaid 6.52694\
simqi\
**\
setx  ainewl 5 ln_militaryaid 1.631735 ainewl_x_ln_militaryaid 8.158675\
simqi\
**\
**\
***********************************************************************\
** TABLE 3\
**\
** MODEL 3.1\
heckman ln_foodaid ainewl ln_militaryaid sanctions_lag  ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag lpop_lag  if  year >=1990 & year<=2004, robust cluster (ccode) select( fooddummy = ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 counter _spline1 _spline2 _spline3) rhosigma nshazard(lambda1)\
drop lambda1\
**\
**\
** MODEL 3.2\
**\
heckman  ln_foodaid ainewl ln_militaryaid sanctions_lag  ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag lpop_lag if  year >=1990 & year<=2004, robust cluster (ccode) select( fooddummy = ainewl ln_militaryaid sanctions_lag  ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 counter _spline1 _spline2 _spline3) rhosigma nshazard(lambda1)\
drop lambda1\
**\
**\
** MODEL 3.3\
**\
heckman ln_foodaid ainewl ln_militaryaid ainewl_x_ln_militaryaid sanctions_lag  ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag lpop_lag if  year >=1990 & year<=2004, robust cluster (ccode) select( fooddummy = ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 counter _spline1 _spline2 _spline3) rhosigma nshazard(lambda1)\
drop lambda1\
**\
**\
** MODEL 3.4\
**\
heckman ln_foodaid ainewl ln_militaryaid ainewl_x_ln_militaryaid sanctions_lag  ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag lpop_lag  if  year >=1990 & year<=2004, robust cluster (ccode) select( fooddummy =  ainewl ln_militaryaid ainewl_x_ln_militaryaid sanctions_lag  ln_nonfoodaid ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 counter _spline1 _spline2 _spline3) rhosigma nshazard(lambda1)\
drop lambda1\
**\
**\
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**\
** Robustness Tests\
**\
**\
mlogit substitute ainewl ln_militaryaid_lag sanctions_lag ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag, robust baseoutcome(3)\
**\
mlogit substitute ainewl ln_militaryaid  sanctions_lag ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag ln_nonfoodaid_lag, robust baseoutcome(3)\
**\
mlogit substitute ainewl ln_militaryaid_lag ainewl_x_ln_militaryaid sanctions_lag ln_cerealpc_lag drought_lag lgdppc_lag ln_cereal_export_lag_2004 ln_foodaid_lag ln_nonfoodaid_lag, robust baseoutcome(3)\
** \
**\
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}